2024
DOI: 10.3844/jcssp.2024.442.453
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Fed-Deep CTRL (Light GBM)-Scalable, Interpretable, and Privacy-Preserving Federated Learning Framework for Wireless Intrusion Detection System

Sudaroli Vijayakumar,
V. Muthumanikandan

Abstract: A learning-based intrusion detection system automates the understanding and reporting of network traffic information. The systems using neural networks and machine learning have demonstrated good detection accuracy, but the accuracy is entirely reliant on the type and volume of data. Additionally, there are issues with its scalability, privacy, efficiency, and interpretability. With the innovative fed-deep CTRL (light GBM) method, this study focuses on creating a local-global federated architecture. On the fed… Show more

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